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Surface Reflectance Product Workplan Jeff Masek, Eric Vermote, David Roy, Robert Wolfe, Feng Gao

Surface Reflectance Product Workplan Jeff Masek, Eric Vermote, David Roy, Robert Wolfe, Feng Gao. What activities and/or decisions are needed to implement an operational Landsat SR product? Algorithm options Algorithm refinements Operational Considerations Science Team Involvement.

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Surface Reflectance Product Workplan Jeff Masek, Eric Vermote, David Roy, Robert Wolfe, Feng Gao

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  1. Surface Reflectance Product WorkplanJeff Masek, Eric Vermote, David Roy, Robert Wolfe, Feng Gao What activities and/or decisions are needed to implement an operational Landsat SR product? • Algorithm options • Algorithm refinements • Operational Considerations • Science Team Involvement

  2. Existing algorithms: LEDAPS vs WELD • Both options are similar in that they use the 6S RT model • LEDAPS: • image-based aerosols using DDV; continental model (1km resolution) • Rayleigh-corrected reflectance used for cloud screening AOT targets • NCEP water vapor (2.5 deg resolution) • TOMS/EP-TOMS/OMI ozone (1 deg resolution) • NCEP surface pressure + elevation (2.5 deg/90m resolution) • Aerosols may be less accurate • Can correct TM/ETM+ archive since 1982 • WELD: • MODIS-based aerosol and water vapor (10 km resolution) • LUT for RT calculations (faster) • Aerosols may be more accurate for MODIS-era • Capability to integrate multiple aerosol models (e.g. dust vs pollution) • Cannot correct pre-2000 archive

  3. Algorithm Choice (cont’d) • LEDAPS needs to be used for the older part of the Landsat archive • Post-2000 archive could use WELD approach for better accuracy, but continuity also important (ie. important to introduce no bias) • D. Roy and E. Vermote comparing both approaches this summer – expect results within three months • RECOMMENDATION: • Begin implementation of LEDAPS code at EROS for all TM/ETM+ data • Use Roy/Vermote analysis to decide if post-2000 acquisitions should rely on WELD rather than LEDAPS • ** Note – USGS EROS is beginning implementation of LEDAPS for FCDR & ECV development

  4. Algorithm Refinements • Currently solar geometry is constant for the scene in both LEDAPS and WELD approaches • Benefits to moving toward per-pixel solar geometry probably 2nd order • Surface reflectance product offers potential for improved cloud/shadow mask • RECOMMENDATION: • Initially use scene-based solar geometry, but perform study to quantify magnitude of difference to SR if per-pixel geometry used (by latitude, season). • Consider activity to generate post-SR cloud/shadow mask as part of SR processing

  5. Operational Considerations • LEDAPS aerosols may be inaccurate in hyper-arid areas where DDV targets not available; however impact on SR for bright targets appears to be small • Polar areas problematic for 6S (BRDF impact of snow cover & low sun elevation) • Coastal regions can be problematic for LEDAPS if land area is small • Excessive cloud contamination hurts aerosol retrieval (missed clouds + adjacency effect) • RECOMMENDATION: • Do not correct land area north/south of +/- 65 degrees • Consider option for Rayleigh+ absorption correction • Additional testing of SR accuracy in desert regions (+ suggest giving users a warning about accuracy for arid regions initially). • Only correct imagery w/ <30% cloud cover

  6. Operational Considerations (cont’d) • Missing ancillary data (especially ozone) a problem. Seems to get worse for OMI era (2009-10)? • RECOMMENDATION: • Work with GSFC to gap-fill ozone record for 1982- current • Implement branch to preclude correction in the absence of valid ozone data (or at least warn user?) • QA process very important for success of implementation • Post-2000 aggregated data can be compared to MODIS SR & NBAR directly • Pre-2000 data could be compared to LTDR? • MODIS uses visual inspection of each granule – may not be possible for on-demand Landsat SR product. • RECOMMENDATION: • EROS needs to implement a QA process for each processed scene. At a minimum suggest comparison with MOD09 data for post-2000 acquisitions

  7. Science Team involvement • Operational atmospheric correction requires a dedicated team to monitor results and continue validation • “Turning the crank” is too optimistic – maintaining product quality will require continued investigations into issues/problems • USGS should build long-term relationship with scientists who can perform validation, diagnosis issues, and improve algorithms • RECOMMENDATION: • USGS should contract with scientist(s) for long-term algorithm validation and maintenance activities; current science team support is not adequate for this role • USGS should regularly review product accuracy & algorithm development with the Landsat Science Team

  8. Overall Recommendations • EROS should pursue implementing a Landsat TM/ETM+/OLI surface reflectance product (1982- ). Initially focus on LEDAPS; consider merging with WELD approach for post-2000 imagery. • Rather than allow on-demand production for the entire archive, suggest implementing pilot program for 1st year • Limited geographic/temporal scope (e.g. US only, 2005, 2010?) • Pre-compute SR products and conduct visual QA for every product • Integrate products with validation activities (e.g. Aeronet) • Assess user feedback, and QA/validation stats • Publish results and use as basis for wider deployment in 2011-12 • Continued science team involvement critical to success

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